Implicit neural representations have shown promising potential for the 3D scene reconstruction. Recent work applies it to autonomous 3D reconstruction by learning information gain for view path planning. Effective as it is, the computation of the information gain is expensive, and compared with that using volumetric representations, collision checking using the implicit representation for a 3D point is much slower. In the paper, we propose to 1) leverage a neural network as an implicit function approximator for the information gain field and 2) combine the implicit fine-grained representation with coarse volumetric representations to improve efficiency. Further with the improved efficiency, we propose a novel informative path planning based on a graph-based planner. Our method demonstrates significant improvements in the reconstruction quality and planning efficiency compared with autonomous reconstructions with implicit and explicit representations. We deploy the method on a real UAV and the results show that our method can plan informative views and reconstruct a scene with high quality.
翻译:最近的工作通过学习信息获取来进行浏览路径规划,将其应用于自主的三维重建。实际上,信息获取的计算成本很高,与使用体积表示相比,使用隐含表示3D点的碰撞检查速度要慢得多。在文件中,我们提议:(1) 利用神经网络作为获取信息字段的隐含功能代言人;(2) 将隐含精细表示与粗粗体体积表示相结合,以提高效率。此外,随着效率的提高,我们建议采用基于图表的规划器进行新的信息化路径规划。我们的方法显示,重建质量和规划效率与以隐含和明确表示的自主重建相比有了显著改善。我们将这种方法运用在真正的无人机上,结果显示,我们的方法可以规划信息化观点,并重建高质量的场景。